|Table of Contents|

Research progress in health monitoring technology for liquid rocket engines(PDF)

《火箭推进》[ISSN:1672-9374/CN:CN 61-1436/V]

Issue:
2024年01期
Page:
28-45
Research Field:
目次
Publishing date:

Info

Title:
Research progress in health monitoring technology for liquid rocket engines
Author(s):
YANG Shuming XIE Changlin CHENG Yuqiang SONG Lijun
College of Aerospace Science and Engineering, National University of Defense Technology,Changsha 410073, China
Keywords:
liquid rocket engine health monitoring technology fault detection and diagnosis fault tolerant control health monitoring system
PACS:
V434
DOI:
10.3969/j.issn.1672-9374.2024.01.003
Abstract:
Liquid rocket engine health monitoring technology, as the core and key technology to ensure the safe and reliable launch of carrier rockets, has vigorously promoted the progress of space industry after decades of development. This paper introduces the research status and development trends of fault detection and diagnosis, fault-tolerant control and health monitoring system in liquid rocket engine health monitoring technology. The important and difficult problems in the field of health monitoring are sorted out, and corresponding solutions are put forward. Finally, the future development trends of liquid rocket engine health monitoring technology is analyzed and prospected, which provides some references for the researchers engaged in the research of rocket engine health monitoring technology.

References:

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